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In mathematics, an inner product space is a vector space with additional structure, an inner product, scalar product or dot product, which allows us to introduce geometrical notions such as angles and lengths of vectors. Inner product spaces are generalizations of Euclidean space (with the dot product as the inner product) and are studied in functional analysis. An inner product space is also called a pre-Hilbert space, since its completion with respect to the metric induced by its inner product is a Hilbert space. Inner product spaces were referred to as unitary spaces in earlier work, although this terminology is now rarely used.
DefinitionsIn the following article, the field of scalars denoted F is either the field of real numbers R or the field of complex numbers C. See below. Formally, an inner product space is a vector space V over the field F together with a map, called an inner product
satisfying the following axioms:
Note that if F=R, then the conjugate symmetry property is simply symmetry of the inner product, i.e.
In this case, sesquilinearity becomes standard linearity. Remark. Many mathematical authors require an inner product to be linear in the first argument and conjugate-linear in the second argument, contrary to the convention adopted above. This change is immaterial, but the definition above ensures a smoother connection to the bra-ket notation used by physicists in quantum mechanics and is now often used by mathematicians as well. Some authors adopt the convention that < , > is linear in the first component while < | > is linear in the second component, although this is by no means universal. For instance the G. Emch reference does not follow this convention. There are various technical reasons why we have to restrict the basefield to R and C in the definition. Briefly the basefield has to contain an ordered subfield (in order for non-negativity to make sense) and therefore has to have characteristic equal to 0. This immediately excludes finite fields. The basefield has to have additional structure, such as a distinguished automorphism. In some cases we need to consider non-negative semi-definite sesquilinear forms. This means that <x, x> is only required to be non-negative. We show how to treat these below. ExamplesA trivial example are the real numbers with the standard multiplication as the inner product
More generally any Euclidean space Rn with the dot product is an inner product space
Even more generally any positive-definite matrix M can be used to define an inner product on Cn as
with x* the conjugate transpose of x. The article on Hilbert space has several examples of inner product spaces where the metric induced by the inner product yields a complete metric spaces. An example of an inner product which induces an incomplete metric is the space C[a, b] of continuous complex valued functions on the interval [a,b]. The inner product is
This space is not complete; consider for example, for the interval [0,1] the sequence of functions { fk }k where
This sequence is a Cauchy sequence which does not converge to a continuous function. Norms on inner product spacesInner product spaces have a naturally defined norm
This is well defined by the nonnegatity axiom of the definition of inner product space. The norm is thought of as the length of the vector x. Directly from the axioms, we can prove the following:
Orthonormal sequencesA sequence {ek}k is orthonormal iff it is orthogonal and each ek has norm 1. An orthonormal basis for an inner product space V is an orthonormal sequence whose algebraic span is V. The Gram-Schmidt process is a canonical procedure that takes a linearly independent sequence {vk}k on an inner product space and produces an orthonormal sequence {ek}k such that for each n
By the Gram-Schmidt orthonormalization process, one shows: Theorem. Any separable inner product space V has an orthonormal basis. Parseval's identity leads immediately to the following theorem: Theorem. Let V be a separable inner product space and {ek}k an orthonormal basis of V. Then the map
is an isometric linear map V → l2 with a dense image. This theorem can be regarded as an abstract form of Fourier series, in which an arbitrary orthornormal basis plays the role of the sequence of trigonometric polynomials. Note that the underlying index set can be taken to be any countable set (and in fact any set whatsoever, provided l2 is defined appropriately, as is explained in the article Hilbert space). In particular, we obtain the following result in the theory of Fourier series: Theorem. Let V be the inner product space <math>C[-\pi,\pi]<math>. Then the sequence (indexed on set of all integers) of continuous functions
is an orthonormal basis of the space <math>C[-\pi,\pi]<math> with the L2 inner product. The mapping
is an isometric linear map with dense image. Orthogonality of the sequence {ek}k follows immediately from the fact that if k ≠ j, then
Normality of the sequence is by design, that is, the coefficients are so chosen so that the norm comes out to 1. Finally the fact that the sequence has a dense algebraic span, in the inner product norm, follows from the fact that the sequence has a dense algebraic span, this time in the space of continuous periodic functions on <math>[-\pi,\pi]<math> with the uniform norm. This is the content of the Weierstrass theorem on the uniform density of trigonometric polynomials. Operators on inner product spacesSeveral types of linear maps A from an inner product space V to an inner product space W are of relevance:
From the point of view of inner product space theory, there is no need to distinguish between two spaces which are isometrically isomorphic. The spectral theorem provides a canonical form for symmetric, unitary and more generally normal operators on finite dimensional inner product spaces. A generalization of the spectral theorem holds for continuous normal operators in Hilbert spaces. Degenerate inner productsIf V is a vector space and < , > a semi-definite sesquilinear form, then the function ||x|| = <x,x>1/2 makes sense and satisfies all the properties of norm except that ||x|| = 0 does not imply x = 0. We can produce an inner product space by considering the quotient W = V/{x:||x|| = 0}. The sesquilinear form < , > factors through W. This construction is used in numerous contexts. The Gelfand-Naimark-Segal construction is a particularly important example of the use of this technique. Another example is the representation of semi-definite kernels on arbitrary sets. References
See alsode:Prähilbertraum fr:Espace préhilbertien he:מרחב מכפלה פנימית nl:Inwendig product ja:計量ベクトル空間 pl:Iloczyn skalarny zh:内积空间 pt:Produto interno
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